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Deconfounded Warm-Start Thompson Sampling with Applications to Precision Medicine

Deconfounded Warm-Start Thompson Sampling with Applications to Precision Medicine

来源:Arxiv_logoArxiv
英文摘要

Randomized clinical trials often require large patient cohorts before drawing definitive conclusions, yet abundant observational data from parallel studies remains underutilized due to confounding and hidden biases. To bridge this gap, we propose Deconfounded Warm-Start Thompson Sampling (DWTS), a practical approach that leverages a Doubly Debiased LASSO (DDL) procedure to identify a sparse set of reliable measured covariates and combines them with key hidden covariates to form a reduced context. By initializing Thompson Sampling (LinTS) priors with DDL-estimated means and variances on these measured features -- while keeping uninformative priors on hidden features -- DWTS effectively harnesses confounded observational data to kick-start adaptive clinical trials. Evaluated on both a purely synthetic environment and a virtual environment created using real cardiovascular risk dataset, DWTS consistently achieves lower cumulative regret than standard LinTS, showing how offline causal insights from observational data can improve trial efficiency and support more personalized treatment decisions.

Prateek Jaiswal、Esmaeil Keyvanshokooh、Junyu Cao

医学研究方法

Prateek Jaiswal,Esmaeil Keyvanshokooh,Junyu Cao.Deconfounded Warm-Start Thompson Sampling with Applications to Precision Medicine[EB/OL].(2025-05-22)[2025-06-22].https://arxiv.org/abs/2505.17283.点此复制

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